Spatial data mining is the discovery of inter-esting relationships and characteristics that may exist implicitly in spatial databases. In this paper, we explore whether clustering methods have a role to play in spatial data mining. To this end, we develop a new clustering method called CLAHANS which is based on randomized search. We also de-velop two spatial data mining algorithms that use CLAHANS. Our analysis and experiments show that with the assistance of CLAHANS, these two algorithms are very effective and can lead to discoveries that are difficult to find with current spatial data mining algo-rithms. Furthermore, experiments conducted to compare the performance of CLAHANS with that of existing clustering methods show that CLAHANS is t...
The field of spatial data mining (Chawla, Shekhar, Wu & Ozesmi 2001), has been influenced by man...
Abstract. The large amount of spatial data available today demands the use of data mining tools for ...
With the growth of geo-referenced data and the sophistication and complexity of spatial databases, d...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
In the past few decades, clustering has been widely used in areas such as pattern recognition, data ...
In the past few decades, clustering has been widely used in areas such as pattern recognition, data ...
An Overview of known spatial clustering algorithms The space of interest can be the two-dimensional ...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
Contributions from researchers in Knowledge Discovery are producing essential tools in order to bett...
Clustering is an important descriptive model in data mining. It groups the data objects into meaning...
Spatial data mining is a mining knowledge from large amounts of spatial data. Spatial data mining al...
There are many techniques available in the field of data mining and its subfield spatial data mining...
The field of spatial data mining (Chawla, Shekhar, Wu & Ozesmi 2001), has been influenced by man...
Abstract. The large amount of spatial data available today demands the use of data mining tools for ...
With the growth of geo-referenced data and the sophistication and complexity of spatial databases, d...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
In the past few decades, clustering has been widely used in areas such as pattern recognition, data ...
In the past few decades, clustering has been widely used in areas such as pattern recognition, data ...
An Overview of known spatial clustering algorithms The space of interest can be the two-dimensional ...
Extracting meaningful patterns from large databases is a relevant task in several areas of geographi...
Contributions from researchers in Knowledge Discovery are producing essential tools in order to bett...
Clustering is an important descriptive model in data mining. It groups the data objects into meaning...
Spatial data mining is a mining knowledge from large amounts of spatial data. Spatial data mining al...
There are many techniques available in the field of data mining and its subfield spatial data mining...
The field of spatial data mining (Chawla, Shekhar, Wu & Ozesmi 2001), has been influenced by man...
Abstract. The large amount of spatial data available today demands the use of data mining tools for ...
With the growth of geo-referenced data and the sophistication and complexity of spatial databases, d...